modellhibákra
Modellhibákra, often translated as "model errors" or "model flaws," refers to inaccuracies or shortcomings within a model that lead to its failure to accurately represent or predict a real-world phenomenon. These errors can arise from various sources, including the underlying assumptions made during model construction, the simplification of complex systems, or the limitations of the data used for training and validation. In statistical modeling, model errors can manifest as a poor fit to the data, biased predictions, or an inability to generalize to new, unseen data.
Identifying and understanding model errors is a crucial step in the model development and deployment process.
The implications of model errors can be significant, particularly in fields like finance, medicine, and engineering,